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Estimation of left behind subway passengers through archived data and video image processing

机译:通过存档数据和视频图像处理估计地铁乘客左后面

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Crowding is one of the most common problems for public transportation systems worldwide, and extreme crowding can lead to passengers being left behind when they are unable to board the first arriving bus or train. This paper combines existing data sources with an emerging technology for object detection to estimate the number of passengers that are left behind on subway platforms. The methodology proposed in this study has been developed and applied to the subway in Boston, Massachusetts. Trains are not currently equipped with automated passenger counters, and farecard data is only collected on entry to the system. An analysis of crowding from inferred origin-destination data was used to identify stations with high likelihood of passengers being left behind during peak hours. Results from North Station during afternoon peak hours are presented here. Image processing and object detection software was used to count the number of passengers that were left behind on station platforms from surveillance video feeds. Automatically counted passengers and train operations data were used to develop logistic regression models that were calibrated to manual counts of left behind passengers on a typical weekday with normal operating conditions. The models were validated against manual counts of left behind passengers on a separate day with normal operations. The results show that by fusing passenger counts from video with train operations data, the number of passengers left behind during a day's rush period can be estimated within 10% of their actual number.
机译:拥挤是全球公共交通系统最常见的问题之一,当他们无法登上第一个到达的公共汽车或火车时,极端拥挤会导致乘客留下。本文将现有数据源与新兴技术结合起来进行对象检测,以估计地铁平台留下留下的乘客数量。本研究提出的方法已经开发并应用于马萨诸塞州波士顿的地铁。列车目前没有配备自动乘客计数器,并且仅在进入系统时收集FARECARD数据。从推断的起源目的地数据中的拥挤分析用于识别高峰时段留下乘客高可能性的站。这里北方驻地的结果在此处展示了山顶。图像处理和对象检测软件用于计算从监控视频源的站平台上留下的乘客数量。自动计数乘客和火车操作数据用于开发逻辑回归模型,这些模型被校准,以便在典型的工作日上手动乘坐乘客的左侧次数,正常运行条件。在具有正常操作的单独日期,该模型验证了乘客的手工计数。结果表明,通过使用火车运营数据的融合乘客计数,留在一天的匆忙期间留下的乘客数量可以估计在其实际数字的10%以内。

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